Article ID Journal Published Year Pages File Type
392472 Information Sciences 2016 18 Pages PDF
Abstract

The neighborhood rough set theory has been successfully applied to various classification tasks. The key concept of this theory is to find a sufficient and necessary neighborhood separable subspace for building a compact model. Given a classification learning task, there usually exist numerous neighborhood separable subspaces that maintain the discriminative ability of the original space with respect to a given granularity. These subspaces contain complementary information for classification. However, it is a challenging task to compute these subspaces efficiently. In this paper, we develop a fast neighborhood attribute reduction algorithm based on sample pair selection to find all reducts. Nevertheless, it cannot deal with large-scale data. Then we propose a randomized attribute reduction algorithm based on neighborhood dependency. The randomized algorithm can find a part of all reducts and is very efficient. A classification framework of joint subspace representation is proposed to fully exploit the complementary information in different subspaces. In addition, a weight matrix is learned to combine the representation residuals in the different subspaces via group sparsity regularization. The performances of the proposed attribute reduction algorithms are compared, and the influence of granularity on attribute reduction is discussed. Finally, the proposed technique is compared with other ensemble learning algorithms. Experimental results show that the proposed framework is superior to state-of-the-art classifiers.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
Authors
, , , , ,